4.7 Article

Quantifying the value of information from inspecting and monitoring engineering systems subject to gradual and shock deterioration

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SAGE PUBLICATIONS LTD
DOI: 10.1177/1475921720981869

关键词

Reliability; value of information; decision-making; structural health modeling; statistical modeling

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The state of engineering systems changes over time due to gradual and shock deterioration, with different data acquisition strategies helping in predicting system states. The cost of acquiring information must be balanced with the benefit it brings in terms of risk reduction. The value of information from Bayesian decision analysis quantifies the benefit provided by such information.
The state of engineering systems changes in time due to the effect of gradual (e.g. corrosion, fatigue) and shock deterioration (e.g. earthquakes, floods, and tornados). At specified moments, for example, after a shock, decision-makers might wish to know the state of the system to take the optimal management action. Different data acquisition strategies such as inspections and continuous structural health monitoring (SHM) can help in the definition and prediction of the system state over time. The acquisition of information comes at a cost that must be balanced by the benefit it brings in terms of risk reduction. The value of information from Bayesian decision analysis quantifies the benefit provided by such information. This article proposes a formulation to compute the value of information of inspection and continuous SHM for degrading engineering systems. In the proposed formulation, the information collected before a given time is used to improve the prediction of the effects of gradual and shock deterioration processes and the future probability of failure. This article investigates the case study of a two-span reinforced concrete bridge degrading under the effect of chemical reactions and seismic actions.

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